GeDi

github.com/annekathrinsilvia/gedi
Idle2updated 6 months ago
R
MIT

The package provides different distances measurements to calculate the difference between genesets. Based on these scores the genesets are clustered and visualized as graph. This is all presented in an interactive Shiny application for easy usage.

Sourced from

  • BioconductorGeDi
  • GitHubgithub.com/annekathrinsilvia/gedi

Related resources

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